Interval-Valued Pythagorean Fuzzy Similarity Measure-Based Complex Proportional Assessment Method for Waste-to-Energy Technology Selection
Abstract
:1. Introductions
Motivation and Novelty
- -
- This study proposes a new IPF similarity measure to evade the shortcomings of existing measures. Furthermore, we utilize it to compute the criteria weights for the waste-to-energy technology selection problem.
- -
- Corresponding to Liu and Wang [54] for IFSs, we develop a procedure under IPFSs to evaluate the DEs’ weights. In addition, a similarity measure-based LP-model is developed to assess the criteria weights.
- -
- To illustrate the WTE technology selection for MSW treatment with qualitative and quantitative criteria, an extended COPRAS method is introduced under IPFSs. Subsequently, a problem of waste-to-energy technology assessment is taken to exemplify the usefulness and stability of the proposed ones.
2. Basic Concepts
- (a)
- If then
- (b)
- If then
- (c)
- If then
- If then
- If then
- If then
3. Proposed Similarity Measure for IPFSs
Comparison with Existing SMs
4. IPF-COPRAS Methodology for MCDM Problems
5. Waste-to-Energy Technologies Selection Problem
Comparison with Existing Methods
- IPF-TOPSIS Approach
- −
- In our approach, the weights of DEs are found with the help of the proposed formula based on Liu and Wang [54], ensuring a more accurate individual significance degree of DEs. Next, the optimal criteria weights in our methodology are obtained through the proposed similarity measure and LP optimization method, which results in outcomes that are more precise and optimal weights, unlike the arbitrarily chosen criteria’s weights by decision-makers in Garg [57].
- −
- In [57], the alternatives are prioritized using the relative closeness coefficient between the overall value of the alternative and the ideal alternative. In the IPF-COPRAS method, the benefit and the cost criteria are both considered. Considering that both the benefit and cost criteria with complex proportions contain more precise data than both the benefit criteria or cost criteria. Meanwhile, it increases the reliability of initial data and the precision of results as well.
- −
- In [57], the distance is calculated between the overall attribute value of an alternative and the IVP-IS and the IPF-AIS to define the CI of each alternative on the given attributes. The IPF-IS and IPF-AIS may be treated as benchmarks against which the performance of the alternatives on each attribute is evaluated. Note that these benchmarks are too unrealistic to be achieved in practice. On the other hand, the COPRAS approach assumes both concerns of criteria according to the complex proportional evaluation, which holds more precise information than diverse existing methods basically considering the beneficial or non-beneficial attributes. Thus, in the process, the benchmarks are obtained on IPF-IS, IPF-AIS, similarity measure and compromise solution, which are more realistic in the sense that the decision-maker knows not only about the best and worst performance of alternatives on the given attributes but also a relative comparison of the performances among them.
- −
- When the number of criteria or options becomes very large, the IPF-COPRAS approach has more operability than the IPF-TOPSIS. In the IPF-COPRAS approach, there is no requirement to obtain the IPF-IS and the IPF-A-IS. The decision outcomes can be obtained through processing the realistic information, which allows the IPF-COPRAS approach to apply more intricate and realistic MCDM problems.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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K L | ||||||
---|---|---|---|---|---|---|
0.9 | 0.9 | 0.9 | 0.9 | 0.8854 | 0.9119 | |
0.9 | 0.9 | 0.9 | 0.9 | 0.928 | 0.9425 | |
0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | |
0.5 | 0.2929 | 0.0 | 0.0 | 0.0 | 0.3133 | |
0.5 | 0.5 | 0.5 | 0.5 | 0.6036 | 0.7155 | |
0.9 | 0.9 | 0.9 | 0.9 | 0.8848 | 0.9113 | |
0.95 | 0.9293 | 0.9 | 0.9 | 0.9270 | 0.9427 |
Criteria Dimension | Criteria | Type | Alternatives |
---|---|---|---|
Quantitative criteria | Treatment cost (P1) | Cost | |
Disposal cost (P2) | Cost | ||
GHG emissions (P3) | Benefit | Incineration (H1) | |
Reduction in volume (P4) | Benefit | Gasification (H2) | |
Water use (P5) | Benefit | Pyrolysis (H3) | |
Pathogen inactivation (P6) | Benefit | Plasma arc gasification (H4) | |
Qualitative criteria | Microbial inactivation efficacy (P7) | Benefit | Thermal de-polymerization(H5) |
Types of waste treated (P8) | Benefit | Hydrothermal carbonization (H6) | |
Air emissions avoidance (P9) | Benefit | Anaerobic digestion (H7) | |
Public acceptance (P10) | Benefit | Fermentation (H8) | |
Treatment effectiveness (P11) | Benefit | ||
Ease of operation (P12) | Benefit |
Linguistic Values | IPFNs |
---|---|
Perfectly Good (PG/PH) | ([0.90, 0.95], [0.05, 0.10]) |
Very Good (VG/VH) | ([0.80, 0.90], [0.20, 0.35]) |
Good (G/H) | ([0.65, 0.80], [0.40, 0.50]) |
Moderate Good (MG/MH) | ([0.50, 0.65], [0.50, 0.60]) |
Fair (F/H) | ([0.40, 0.50], [0.60, 0.70]) |
Moderate Low (ML) | ([0.30, 0.40], [0.70, 0.80]) |
Low (L) | ([0.20, 0.30], [0.80, 0.85]) |
Very low (VL) | ([0.10, 0.20], [0.85, 0.90]) |
Very low (VVL) | ([0.05, 0.10], [0.90, 0.95]) |
DEs | D1 | D2 | D3 | D4 |
---|---|---|---|---|
IPFNs | ([0.65, 0.80], [0.40, 0.50]) | ([0.50, 0.65], [0.50, 0.60]) | ([0.40, 0.50], [0.60, 0.70]) | ([0.30, 0.40], [0.70, 0.80]) |
Weights | 0.4284 | 0.2890 | 0.1778 | 0.1048 |
H1 | H2 | H3 | H4 | H5 | H6 | H7 | H8 | |
---|---|---|---|---|---|---|---|---|
P1 | (L,VL,L,L) | (ML,L,L,ML) | (F,ML,L,F) | (F,MG,F,G) | (ML,M,M,MG) | (MG,F,ML,L) | (L,VL,VL,VL) | (VL,L,L,VL) |
P2 | (F,F,ML,L) | (VL,M,ML,M) | (MG,ML,M,ML) | (ML,M,ML,L) | (MG,ML,L,M) | (L,M,ML,ML) | (L,L,VL,VL) | (L,ML,ML, ML) |
P3 | (F,MG,MG,G) | (G,MG,F,G) | (ML,MG,MG,G) | (VG,M,VG,G) | (G,F,MG,G) | (VG,F,MG,G) | (MG,F,F,F) | (L,F,G,G) |
P4 | (F,MG,F,G) | (MG,F,G,G) | (G,F,MG,G) | (VG,VG,VG,G) | (ML,MG,MG,G) | (G,MG,MG,G) | (G,MG,G,ML) | (MG,MG,G,ML) |
P5 | (MG,F,F,G) | (VG,F,F,MG) | (F,G,G,MG) | (G,MG,F,G) | (MG,F,L,G) | (G,ML,F,G) | (G,VG,VG,G) | (G,G,ML,ML) |
P6 | (G,MG,G,ML) | (MG,MG,G,M) | (G,VG,VG,ML) | (G,F,MG,MG) | (F,MG,F,MG) | (F,F,ML,G) | (F,F,F,G) | (VG,ML,G,G) |
P7 | (F,MG,G,MG) | (MG,MG,VG,ML) | (G,MG,G,ML) | (M,ML,G,MG) | (F,MG,G,G) | (F,MG,G,ML) | (F,MG,G,VG) | (MG,MG,VG,MG) |
P8 | (F,MG,G,L) | (MG,F,VG,ML) | (G,G,L,MG) | (G,VG,G,ML) | (MG,G,G,L) | (MG,G,G,MG) | (G,L,G,ML) | (M,L,G,G) |
P9 | (MG,M,G,M) | (VL,ML,L,MG) | (M,L,MG,ML) | (VH,VH,H,H) | (VH,H,M,MG) | (VH,L,MH,ML) | (VH,VH,H,ML) | (ML,MG,G,G) |
P10 | (G,MG.F,H) | (F,F,G,G) | (F,F,G,H) | (G,VG,F,L) | (VG,G,MG,M) | VG,G,MG,MG) | (F,MG,G,G) | (MG,F,VG,G) |
P11 | (F,MG,MG,G) | (G,MG,G,L) | (G,ML,MG,L) | (VG,MG,VG,MG) | (G,F,MG,ML) | (G,MG,G,ML) | (G,G,G,ML) | (F,VG,G,L) |
P12 | (F,MG,F,G) | (MG,F,G,F) | (G,F,MG,G) | (VG,L,VG,ML) | (G,MG,ML,MG) | (G,G,ML,ML) | (MG,G,G,ML) | (G,VG,F,F) |
H1 | H2 | H3 | H4 | H5 | H6 | H7 | H8 | |
---|---|---|---|---|---|---|---|---|
P1 | ([0.177, 0.275], [0.814, 0.864]) | ([0.259, 0.358], [0.745, 0.823]) | ([0.346, 0.445], [0.660, 0.753]) | ([0.467, 0.597], [0.546, 0.646]) | ([0.375, 0.484], [0.629, 0.729]) | ([0.421, 0.549], [0.588, 0.685]) | ([0.152, 0.248], [0.782, 0.856]) | ([0.155, 0.252], [0.826, 0.876]) |
P2 | ([0.369, 0.468], [0.636, 0.732]) | ([0.293, 0.386], [0.716, 0.798]) | ([0.417, 0.547], [0.590, 0.691]) | ([0.325, 0.425], [0.679, 0.775]) | ([0.402, 0.532], [0.611, 0.705]) | ([0.300, 0.398], [0.709, 0.790]) | ([0.178, 0.276], [0.814, 0.864]) | ([0.263, 0.362], [0.741, 0.821]) |
P3 | ([0.484, 0.621], [0.528, 0.629]) | ([0.578, 0.728], [0.459, 0.560]) | ([0.455, 0.596], [0.564, 0.666]) | ([0.719, 0.835], [0.295, 0.444]) | ([0.571, 0.718], [0.468, 0.569]) | ([0.670, 0.795], [0.348, 0.489]) | ([0.447, 0.574], [0.555, 0.655]) | ([0.447, 0.581], [0.605, 0.692]) |
P4 | ([0.467, 0.597], [0.546, 0.646]) | ([0.529, 0.675], [0.495, 0.596]) | ([0.571, 0.718], [0.468, 0.569]) | ([0.788, 0.893], [0.215, 0.363]) | ([0.455, 0.596], [0.564, 0.666]) | ([0.590, 0.742], [0.444, 0.544]) | ([0.589, 0.741], [0.452, 0.554]) | ([0.519, 0.669], [0.498, 0.599]) |
P5 | ([0.480, 0.616], [0.532, 0.633]) | ([0.650, 0.771], [0.368, 0.512]) | ([0.551, 0.694], [0.487, 0.589]) | ([0.578, 0.728], [0.459, 0.560]) | ([0.461, 0.598], [0.560, 0.655]) | ([0.544, 0.690], [0.505, 0.608]) | ([0.733, 0.856], [0.289, 0.423]) | ([0.586, 0.737], [0.469, 0.571]) |
P6 | ([0.589, 0.741], [0.452, 0.554]) | ([0.525, 0.674], [0.490, 0.590]) | ([0.717, 0.841], [0.307, 0.445]) | ([0.554, 0.701], [0.479, 0.580]) | ([0.443, 0.569], [0.558, 0.659]) | ([0.425, 0.540], [0.591, 0.692]) | ([0.439, 0.553], [0.575, 0.676]) | ([0.680, 0.806], [0.349, 0.492]) |
P7 | ([0.498, 0.637], [0.520, 0.621]) | ([0.573, 0.712], [0.440, 0.562]) | ([0.589, 0.741], [0.452, 0.554]) | ([0.453, 0.582], [0.573, 0.674]) | ([0.518, 0.659], [0.508, 0.609]) | ([0.483, 0.618], [0.538, 0.640]) | ([0.551, 0.687], [0.472, 0.586]) | ([0.585, 0.725], [0.425, 0.545]) |
P8 | ([0.478, 0.614], [0.546, 0.644]) | ([0.553, 0.684], [0.464, 0.587]) | ([0.592, 0.744], [0.463, 0.560]) | ([0.687, 0.820], [0.347, 0.474]) | ([0.565, 0.717], [0.473, 0.572]) | ([0.580, 0.733], [0.451, 0.551]) | ([0.546, 0.697], [0.518, 0.612]) | ([0.463, 0.596], [0.581, 0.673]) |
P9 | ([0.501, 0.641], [0.516, 0.617]) | ([0.258, 0.364], [0.752, 0.825]) | ([0.370, 0.484], [0.641, 0.731]) | ([0.767, 0.879], [0.243, 0.387]) | ([0.694, 0.820], [0.327, 0.464]) | ([0.628, 0.754], [0.408, 0.552]) | ([0.754, 0.867], [0.258, 0.407]) | ([0.493, 0.638], [0.542, 0.645]) |
P10 | ([0.578, 0.728], [0.459, 0.560]) | ([0.494, 0.625], [0.535, 0.637]) | ([0.494, 0.625], [0.535, 0.637]) | ([0.657, 0.790], [0.378, 0.506]) | ([0.697, 0.824], [0.323, 0.459]) | ([0.702, 0.829], [0.317, 0.452]) | ([0.518, 0.659], [0.508, 0.609]) | ([0.582, 0.717], [0.437, 0.559]) |
P11 | ([0.484, 0.621], [0.528, 0.629]) | ([0.586, 0.738], [0.459, 0.557]) | ([0.522, 0.670], [0.526, 0.625]) | ([0.721, 0.840], [0.287, 0.433]) | ([0.541, 0.686], [0.496, 0.598]) | ([0.589, 0.741], [0.452, 0.554]) | ([0.628, 0.779], [0.424, 0.525]) | ([0.613, 0.740], [0.419, 0.551]) |
P12 | ([0.467, 0.597], [0.546, 0.646]) | ([0.501, 0.641], [0.516, 0.617]) | ([0.571, 0.718], [0.468, 0.569]) | ([0.688, 0.807], [0.340, 0.493]) | ([0.553, 0.704], [0.482, 0.584]) | ([0.586, 0.737], [0.469, 0.571]) | ([0.568, 0.720], [0.467, 0.568]) | ([0.663, 0.795], [0.367, 0.496]) |
Criteria | ||
---|---|---|
P1 | ([0.152, 0.248], [0.826, 0.876]) | ([0.467, 0.597], [0.546, 0.646]) |
P2 | ([0.178, 0.276], [0.814, 0.864]) | ([0.417, 0.547], [0.590, 0.691]) |
P3 | ([0.719, 0.835], [0.295, 0.444]) | ([0.447, 0.574], [0.605, 0.692]) |
P4 | ([0.788, 0.893], [0.215, 0.363]) | ([0.455, 0.596], [0.564, 0.666]) |
P5 | ([0.733, 0.856], [0.289, 0.423]) | ([0.461, 0.598], [0.560, 0.655]) |
P6 | ([0.717, 0.841], [0.307, 0.445]) | ([0.425, 0.540], [0.591, 0.692]) |
P7 | ([0.589, 0.741], [0.425, 0.545]) | ([0.453, 0.582], [0.573, 0.674]) |
P8 | ([0.687, 0.820], [0.347, 0.474]) | ([0.463, 0.596], [0.581, 0.673]) |
P9 | ([0.767, 0.879], [0.243, 0.387]) | ([0.258, 0.364], [0.752, 0.825]) |
P10 | ([0.702, 0.829], [0.317, 0.452]) | ([0.494, 0.625], [0.535, 0.637]) |
P11 | ([0.721, 0.840], [0.287, 0.433]) | ([0.484, 0.621], [0.528, 0.629]) |
P12 | ([0.688, 0.807], [0.340, 0.493]) | ([0.467, 0.597], [0.546, 0.646]) |
Options | Ranking | ||||||
---|---|---|---|---|---|---|---|
H1 | ([0.471, 0.607], [0.563, 0.658]) | 0.477 | ([0.108, 0.145], [0.959, 0.971]) | 0.043 | 0.522 | 72.774 | 8 |
H2 | ([0.514, 0.651], [0.533, 0.637]) | 0.520 | ([0.099, 0.134], [0.963, 0.975]) | 0.038 | 0.571 | 79.593 | 6 |
H3 | ([0.493, 0.634], [0.559, 0.655]) | 0.494 | ([0.140, 0.188], [0.944, 0.961]) | 0.060 | 0.526 | 73.369 | 7 |
H4 | ([0.654, 0.781], [0.386, 0.523]) | 0.685 | ([0.141, 0.188], [0.944, 0.961]) | 0.060 | 0.717 | 100.00 | 1 |
H5 | ([0.552, 0.693], [0.496, 0.603]) | 0.567 | ([0.140, 0.190], [0.944, 0.961]) | 0.061 | 0.599 | 83.474 | 4 |
H6 | ([0.583, 0.720], [0.465, 0.583]) | 0.602 | ([0.127, 0.172], [0.951, 0.965]) | 0.053 | 0.638 | 89.020 | 3 |
H7 | ([0.563, 0.701], [0.485, 0.597]) | 0.579 | ([0.058, 0.093], [0.974, 0.982]) | 0.025 | 0.656 | 91.506 | 2 |
H8 | ([0.521, 0.657], [0.532, 0.638]) | 0.523 | ([0.079, 0.114], [0.970, 0.980]) | 0.030 | 0.587 | 81.902 | 5 |
H1 | H2 | H3 | H4 | H5 | H6 | H7 | H8 | |
---|---|---|---|---|---|---|---|---|
P1 | ([0.814,0.864], [0.177, 0.275]) | ([0.745, 0.823], [0.259, 0.358]) | ([0.660,0.753], [0.346, 0.445]) | ([0.546, 0.646], [0.467, 0.597]) | ([0.629, 0.729], [0.375, 0.484]) | ([0.588, 0.685], [0.421, 0.549]) | ([0.782, 0.856], [0.152, 0.248]) | ([0.826, 0.876], [0.155, 0.252]) |
P2 | ([0.636,0.732], [0.369, 0.468]) | ([0.716, 0.798], [0.293, 0.386]) | ([0.590,0.691], [0.417, 0.547]) | ([0.679, 0.775], [0.325, 0.425]) | ([0.611, 0.705], [0.402, 0.532]) | ([0.709, 0.790], [0.300, 0.398]) | ([0.814, 0.864], [0.178, 0.276]) | ([0.741, 0.821], [0.263, 0.362]) |
P3 | ([0.484,0.621], [0.528, 0.629]) | ([0.578, 0.728], [0.459, 0.560]) | ([0.455,0.596], [0.564, 0.666]) | ([0.719, 0.835], [0.295, 0.444]) | ([0.571, 0.718], [0.468, 0.569]) | ([0.670, 0.795], [0.348, 0.489]) | ([0.447, 0.574], [0.555, 0.655]) | ([0.447, 0.581], [0.605, 0.692]) |
P4 | ([0.467,0.597], [0.546, 0.646]) | ([0.529, 0.675], [0.495, 0.596]) | ([0.571,0.718], [0.468, 0.569]) | ([0.788, 0.893], [0.215, 0.363]) | ([0.455, 0.596], [0.564, 0.666]) | ([0.590, 0.742], [0.444, 0.544]) | ([0.589, 0.741], [0.452, 0.554]) | ([0.519, 0.669], [0.498, 0.599]) |
P5 | ([0.480,0.616], [0.532, 0.633]) | ([0.650, 0.771], [0.368, 0.512]) | ([0.551,0.694], [0.487, 0.589]) | ([0.578, 0.728], [0.459, 0.560]) | ([0.461, 0.598], [0.560, 0.655]) | ([0.544, 0.690], [0.505, 0.608]) | ([0.733, 0.856], [0.289, 0.423]) | ([0.586, 0.737], [0.469, 0.571]) |
P6 | ([0.589,0.741], [0.452, 0.554]) | ([0.525, 0.674], [0.490, 0.590]) | ([0.717,0.841], [0.307, 0.445]) | ([0.554, 0.701], [0.479, 0.580]) | ([0.443, 0.569], [0.558, 0.659]) | ([0.425, 0.540], [0.591, 0.692]) | ([0.439, 0.553], [0.575, 0.676]) | ([0.680, 0.806], [0.349, 0.492]) |
P7 | ([0.498,0.637], [0.520, 0.621]) | ([0.573, 0.712], [0.440, 0.562]) | ([0.589,0.741], [0.452, 0.554]) | ([0.453, 0.582], [0.573, 0.674]) | ([0.518, 0.659], [0.508, 0.609]) | ([0.483, 0.618], [0.538, 0.640]) | ([0.551, 0.687], [0.472, 0.586]) | ([0.585, 0.725], [0.425, 0.545]) |
P8 | ([0.478,0.614], [0.546, 0.644]) | ([0.553, 0.684], [0.464, 0.587]) | ([0.592,0.744], [0.463, 0.560]) | ([0.687, 0.820], [0.347, 0.474]) | ([0.565, 0.717], [0.473, 0.572]) | ([0.580, 0.733], [0.451, 0.551]) | ([0.546, 0.697], [0.518, 0.612]) | ([0.463, 0.596], [0.581, 0.673]) |
P9 | ([0.501,0.641], [0.516, 0.617]) | ([0.258, 0.364], [0.752, 0.825]) | ([0.370,0.484], [0.641, 0.731]) | ([0.767, 0.879], [0.243, 0.387]) | ([0.694, 0.820], [0.327, 0.464]) | ([0.628, 0.754], [0.408, 0.552]) | ([0.754, 0.867], [0.258, 0.407]) | ([0.493, 0.638], [0.542, 0.645]) |
P10 | ([0.578,0.728], [0.459, 0.560]) | ([0.494, 0.625], [0.535, 0.637]) | ([0.494,0.625], [0.535, 0.637]) | ([0.657, 0.790], [0.378, 0.506]) | ([0.697, 0.824], [0.323, 0.459]) | ([0.702, 0.829], [0.317, 0.452]) | ([0.518, 0.659], [0.508, 0.609]) | ([0.582, 0.717], [0.437, 0.559]) |
P11 | ([0.484,0.621], [0.528, 0.629]) | ([0.586, 0.738], [0.459, 0.557]) | ([0.522,0.670], [0.526, 0.625]) | ([0.721, 0.840], [0.287, 0.433]) | ([0.541, 0.686], [0.496, 0.598]) | ([0.589, 0.741], [0.452, 0.554]) | ([0.628, 0.779], [0.424, 0.525]) | ([0.613, 0.740], [0.419, 0.551]) |
P12 | ([0.467,0.597], [0.546, 0.646]) | ([0.501, 0.641], [0.516, 0.617]) | ([0.571,0.718], [0.468, 0.569]) | ([0.688, 0.807], [0.340, 0.493]) | ([0.553, 0.704], [0.482, 0.584]) | ([0.586, 0.737], [0.469, 0.571]) | ([0.568, 0.720], [0.467, 0.568]) | ([0.663, 0.795], [0.367, 0.496]) |
Options | Ranking | |||
---|---|---|---|---|
H1 | 1.3637 | 1.5584 | 0.5333 | 7 |
H2 | 1.3052 | 1.7313 | 0.5702 | 6 |
H3 | 1.3731 | 1.5504 | 0.5303 | 8 |
H4 | 0.8129 | 2.1736 | 0.7278 | 1 |
H5 | 1.1240 | 1.7870 | 0.6139 | 4 |
H6 | 0.9754 | 1.9340 | 0.6647 | 2 |
H7 | 1.1169 | 1.9328 | 0.6338 | 3 |
H8 | 1.2431 | 1.7621 | 0.5864 | 5 |
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Mishra, A.R.; Pamučar, D.; Hezam, I.M.; Chakrabortty, R.K.; Rani, P.; Božanić, D.; Ćirović, G. Interval-Valued Pythagorean Fuzzy Similarity Measure-Based Complex Proportional Assessment Method for Waste-to-Energy Technology Selection. Processes 2022, 10, 1015. https://doi.org/10.3390/pr10051015
Mishra AR, Pamučar D, Hezam IM, Chakrabortty RK, Rani P, Božanić D, Ćirović G. Interval-Valued Pythagorean Fuzzy Similarity Measure-Based Complex Proportional Assessment Method for Waste-to-Energy Technology Selection. Processes. 2022; 10(5):1015. https://doi.org/10.3390/pr10051015
Chicago/Turabian StyleMishra, Arunodaya Raj, Dragan Pamučar, Ibrahim M. Hezam, Ripon K. Chakrabortty, Pratibha Rani, Darko Božanić, and Goran Ćirović. 2022. "Interval-Valued Pythagorean Fuzzy Similarity Measure-Based Complex Proportional Assessment Method for Waste-to-Energy Technology Selection" Processes 10, no. 5: 1015. https://doi.org/10.3390/pr10051015
APA StyleMishra, A. R., Pamučar, D., Hezam, I. M., Chakrabortty, R. K., Rani, P., Božanić, D., & Ćirović, G. (2022). Interval-Valued Pythagorean Fuzzy Similarity Measure-Based Complex Proportional Assessment Method for Waste-to-Energy Technology Selection. Processes, 10(5), 1015. https://doi.org/10.3390/pr10051015